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Faster Web page allocation with neural networks

机译:使用神经网络更快地分配网页

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摘要

To maintain quality of service, some heavily trafficked Web sites use multiple servers, which share information through a shared file system or data space. The Andrews file system (AFS) and distributed file system (DFS), for example, can facilitate this sharing. In other sites, each server might have its own independent file system. Although scheduling algorithms for traditional distributed systems do not address the special needs of Web server clusters well, a significant evolution in the computational approach to artificial intelligence and cognitive engineering shows promise for Web request scheduling. Not only is this transformation - from discrete symbolic reasoning to massively parallel and connectionist neural modeling - of compelling scientific interest, but also of considerable practical value. Our novel application of connectionist neural modeling to map Web page requests to Web server caches maximizes hit ratio while load balancing among caches. In particular, we have developed a new learning algorithm for fast Web page allocation on a server using the self-organizing properties of the neural network (NN).
机译:为了保持服务质量,一些流量繁忙的网站使用多个服务器,这些服务器通过共享的文件系统或数据空间共享信息。例如,安德鲁斯文件系统(AFS)和分布式文件系统(DFS)可以促进这种共享。在其他站点中,每个服务器可能具有自己的独立文件系统。尽管传统的分布式系统的调度算法不能很好地满足Web服务器集群的特殊需求,但是人工智能和认知工程的计算方法的显着发展显示了Web请求调度的希望。这种转换-从离散的符号推理到大规模的并行和连接主义的神经建模-不仅具有令人信服的科学兴趣,而且具有相当大的实用价值。我们在连接主义神经模型的新颖应用程序中将网页请求映射到Web服务器缓存,从而最大程度地提高了命中率,同时平衡了缓存之间的负载。特别是,我们使用神经网络(NN)的自组织特性,开发了一种新的学习算法,用于在服务器上快速分配Web页面。

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